Topical: Automatic Repository Tagging using Attention on Hybrid Code Embeddings
This paper presents Topical, a novel deep neural network for repository level embeddings. Existing methods, reliant on natural language documentation or naive aggregation techniques, are outperformed by Topical’s utilization of an attention mechanism. This mechanism generates repository-level representations from source code, full dependency graphs, and script level textual data. Trained on publicly accessible GitHub repositories, Topical surpasses multiple baselines in tasks such as repository auto-tagging, highlighting the attention mechanism’s efficacy over traditional aggregation methods. Topical also demonstrates scalability and efficiency, making it a valuable contribution to repository-level representation computation. For further research, the accompanying tools, code, and training dataset are provided at: [anonymous URL].
Tue 16 AprDisplayed time zone: Lisbon change
16:00 - 17:30 | |||
16:00 25mLong-paper | Topical: Automatic Repository Tagging using Attention on Hybrid Code Embeddings FinanSE Agathe Lherondelle JP Morgan Chase, Varun Babbar JP Morgan Chase, Yash Satsangi , Fran Silavong , Sean Moran | ||
16:25 15mShort-paper | Toward Automated Change Impact Analysis of Financial Regulations FinanSE Sallam Abualhaija University of Luxembourg, Marcello Ceci University of Luxembourg, Nicolas Sannier University of Luxembourg, SnT, Domenico Bianculli University of Luxembourg, Dirk Zetzsche University of Luxembourg, Marco Bodellini University of Luxembourg | ||
16:40 5mDay closing | Closing FinanSE |